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Machine-learned prediction of annual crop planting in the US Corn Belt based on historical crop planting maps

机译:基于历史作物种植地图的美国玉米皮带年作物种植的机器学习预测

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An accurate crop planting map can provide essential information for decision support in agriculture. The method of post-season and in-season crop mapping has been widely studied in the land use and land cover community. However, it remains a challenge to predict the spatial distribution of crop planting before the growing season. This paper is the first attempt to use machine learning approach on the prediction of field-level annual crop planting from historical crop planting maps. We present an end-to-end machine learning framework for crop planting prediction using Cropland Data Layer (CDL) time series as reference data and multi-layer artificial neural network as prediction model. The proposed framework was first tested at Lancaster County of Nebraska State, then scaled up to the U.S. Corn Belt. According to the experiment results from 53 Agricultural Statistics Districts, we found the machine-learned crop planting map was expected to reach 88% agreement with the future CDL. Meanwhile, the crop acreage estimates derived from the machine-learned prediction were highly correlated (R-2 > 0.9) with the crop acreage estimates of CDL and official statistics by the U.S. Department of Agriculture National Agricultural Statistics Service. This study provides a low-cost and efficient way to predict annual crop planting map, which can be used to support many agricultural applications and decision makings before the beginning of a growing season.
机译:准确的作物种植地图可以提供农业决策支持的基本信息。在土地利用和陆地覆盖社区中广泛研究了季后赛和季节性作物测绘的方法。然而,预测在生长季节之前的作物种植的空间分布仍然是一项挑战。本文是首次尝试使用机器学习方法对历史作物种植地图种植的田间年度作物预测。我们使用农田数据层(CDL)时间序列作为参考数据和多层人工神经网络作为预测模型,为作物种植预测提供端到端机器学习框架。拟议的框架首次在内布拉斯加州兰开斯塔县举行测试,然后缩减到美国玉米带。根据53个农业统计区的实验结果,我们发现机器学习的作物地图预计将与未来CDL协议达到88%。同时,源自机器学习预测的作物面积估计与美国农业部农业统计服务部的CDL和官方统计的作物面积估计高度相关(R-2> 0.9)。本研究提供了一种低成本和有效的方法来预测年度作物种植地图,可用于支持许多农业应用和决策,在不断增长的季节开始之前。

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